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USING MULTIPLE CORRESPONDENCE ANALYSIS WITH MEMBERSHIP VALUES WHEN THE SYSTEM STUDY YIELDS MISCELLANEOUS DATASETS

机译:当系统研究产生其他数据集时,使用具有成员值的多重对应分析

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This article explains the main role that space windowing plays in preliminary knowledge extraction from multifactor and multivariate databases coming from complex system empirical studies. The explanation is based on the general case of a database with a hyper-parallelepipedic structure in which the directions correspond to the factors and where the measurement variables may be quantitative or qualitative, temporal or nontemporal, and objective or subjective. First, the data in each cell of the hyperparallelepiped is transformed into membership values that can be averaged over factors, such as time or individual. Then, several graphic techniques can be exploited to investigate membership values. This article mainly focuses on the use of multiple correspondence analysis (MCA). A didactic example with several factors and several kinds of variables- nontemporal vs. temporal where each one may be either quantitative or qualitative-is used to illustrate the widespread use of the pair "space windowing/MCA." The discussion presents the advantages and disadvantages of using space windowing to perform a preliminary analysis of a multifactor multivariate system study.
机译:本文解释了空间窗在复杂系统实证研究的多因素和多变量数据库的初步知识提取中所起的主要作用。该解释基于具有超平行六面体结构的数据库的一般情况,其中方向与因素相对应,并且测量变量可以是定量的或定性的,时间的或非时间的,客观的或主观的。首先,将超平行六面体的每个单元格中的数据转换为成员资格值,该成员资格值可以在诸如时间或个人等因素上平均。然后,可以利用几种图形技术来调查成员资格值。本文主要关注多重对应分析(MCA)的使用。一个具有多个因素和几种变量的教学示例(非时态与时态,其中每个变量可以是定性的或定性的)用于说明“空间开窗/ MCA”对的广泛使用。讨论提出了使用空间窗口进行多因素多变量系统研究的初步分析的优缺点。

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